基于EOF的台风路径非线性人工智能集成预测模型

Xiaoyan Huang, Long Jin, Xvming Shi
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引用次数: 4

摘要

利用从有随机噪声的气象场中提取主信号特征的能力,通过对经验正交函数(EOF)进行主成分分析消除随机干扰,遵循数值天气预报(NWP)中集合预报的思路,利用进化计算中的遗传算法(GA)建立具有相同期望输出的多个神经网络,建立了一种新的非线性人工智能集成预测(NAIEP)模型。以1980 ~ 2009年南海30年7月台风样本为基础,建立了遗传神经网络(GNN)集合预报(GNNEP)模型,该模型采用逐步回归和EOF的方法选择气候持续性预报因子和数值预报(NWP)产品中的预测因子,对台风路径进行预测。预报实验结果表明,在相同预测因子和样例的情况下,NAIEP模式的预报精度明显优于CLIPER模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Nonlinear Artificial Intelligence Ensemble Prediction Model Based on EOF for Typhoon Track
Using the capability of extraction the main signal feature from meteorological fields with random noise, and eliminate random disturbance by principal component analysis with conducted on empirical orthogonal functions(EOF), and following the thinking clue of the ensemble prediction in numerical weather prediction (NWP), a novel nonlinear artificial intelligence ensemble prediction (NAIEP) model has been developed based on the multiple neural networks with identical expected output created by using the genetic algorithm (GA) of evolutionary computation. Basing on the sample of typhoon in July from 1980 to 2009 for 30 years in the South China Sea, setting up the genetic neural network (GNN) ensemble prediction (GNNEP) model which selecting the predictors by the method of Stepwise regression and EOF both in the predictors of climatology persistence and Numerical forecasting(NWP) products to predict the typhoon track. The mean error for 24 hours of this new model is 125.7km, and the results of prediction experiments showed that the NAIEP model is obviously more skillful than the climatology and persistence (CLIPER) model with the circumstance of identical predictors and sample cases.
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